AIs that look human and create portraits of humans

31/10/2018 34 min Episodio 18
AIs that look human and create portraits of humans

Listen "AIs that look human and create portraits of humans"

Episode Synopsis


In this new and updates show, Daniel and Chris discuss, among other things, efforts to use AI in art and efforts to make AI interfaces look human. They also discuss some learning resources related to neural nets, AI fairness, and reinforcement learning.
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Featuring:Chris Benson – Website, GitHub, LinkedIn, XDaniel Whitenack – Website, GitHub, XShow Notes:News from Daniel:

AI portrait up for auction
Graph ML related things:

Deepmind Graphnet library
Knowledge Graphs and ML
Semantic Scholar


CSV conf

News from Chris:

Magic Leap’s new AI assistant looks alarmingly human
MIT Stephen A. Schwarzman College of Computing
Deep-learning algorithm identifies dense tissue in mammograms

Learning resources:

Neural network playground
IBM AI Fairness 360
Towards Data Science
Artificial Intelligence: What’s The Difference Between Deep Learning And Reinforcement Learning?

Something missing or broken? PRs welcome!